Puri Isha, Cox David D
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:3590-3593. doi: 10.1109/EMBC.2018.8513072.
Research in neuroscience and vision science relies heavily on careful measurements of animal subject's gaze direction. Rodents are the most widely studied animal subjects for such research because of their economic advantage and hardiness. Recently, video based eye trackers that use image processing techniques have become a popular option for gaze tracking because they are easy to use and are completely noninvasive. Although significant progress has been made in improving the accuracy and robustness of eye tracking algorithms, unfortunately, almost all of the techniques have focused on human eyes, which does not account for the unique characteristics of the rodent eye images, e.g., variability in eye parameters, abundance of surrounding hair, and their small size. To overcome these unique challenges, this work presents a flexible, robust, and highly accurate model for pupil and corneal reflection identification in rodent gaze determination that can be incrementally trained to account for variability in eye parameters encountered in the field. To the best of our knowledge, this is the first paper that demonstrates a highly accurate and practical biomedical image segmentation based convolutional neural network architecture for pupil and corneal reflection identification in eye images. This new method, in conjunction with our automated infrared videobased eye recording system, offers the state of the art technology in eye tracking for neuroscience and vision science research for rodents.
神经科学和视觉科学的研究严重依赖于对动物受试者注视方向的精确测量。啮齿动物因其经济优势和强健性,是此类研究中研究最为广泛的动物受试者。近来,基于视频的眼动追踪仪利用图像处理技术,成为注视追踪的热门选择,因为它们易于使用且完全无创。尽管在提高眼动追踪算法的准确性和鲁棒性方面已取得显著进展,但遗憾的是,几乎所有技术都聚焦于人类眼睛,并未考虑啮齿动物眼睛图像的独特特征,例如眼睛参数的变异性、周围毛发过多以及眼睛尺寸较小等。为克服这些独特挑战,本文提出一种灵活、鲁棒且高度准确的模型,用于在啮齿动物注视确定中识别瞳孔和角膜反射,该模型可进行增量训练,以适应实际中遇到的眼睛参数变异性。据我们所知,这是第一篇展示基于卷积神经网络架构的高精度实用生物医学图像分割方法用于眼部图像中瞳孔和角膜反射识别的论文。这种新方法与我们基于自动红外视频的眼部记录系统相结合,为啮齿动物神经科学和视觉科学研究的眼动追踪提供了最先进的技术。